考虑全球金融变量和ARIMA模型的NSE股指走势预测

R. Maheshwari, V. Kapoor
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摘要

随着技术的发展和存储容量的提高,人们可以获得世界上任何一个主要股票市场的历史数据。在过去的几十年里,印度股市增长非常快。最近,印度股市的投资能力和频率急剧增加。现在越来越多的人投资股票市场和共同基金,因此有许多人试图预测股票市场指数,以获得最大的利润。本文采用ARIMA模型对全国证券交易所指数的开盘值进行预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the NSE stock index trends considering global financial variables and ARIMA model
Abstract With the advent of technology and advancements in storage capacities, one can get the historical data for any of the major stock markets of the world. In the last few decades, the Indian stock market grew very fast. The investment capacity and frequency for Indian stock markets increased drastically recently. More and more people are investing in stock markets and mutual funds nowadays and as a result of that there have been numerous attempts to forecast the stock market index so as to gain maximum profit. The proposed work forecasts the opening value of the National Stock Exchange index using the ARIMA model.
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